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I want to prepare the omniglot dataset for n-shot learning. Therefore I need 5 samples from 10 classes (alphabet)

Code to reproduce

import tensorflow as tf
import tensorflow_datasets as tfds
import numpy as np

builder = tfds.builder("omniglot")
# assert builder.info.splits['train'].num_examples == 60000
builder.download_and_prepare()
# Load data from disk as tf.data.Datasets
datasets = builder.as_dataset()
dataset, test_dataset = datasets['train'], datasets['test']


def resize(example):
    image = example['image']
    image = tf.image.resize(image, [28, 28])
    image = tf.image.rgb_to_grayscale(image, )
    image = image / 255
    one_hot_label = np.zeros((51, 10))
    return image, one_hot_label, example['alphabet']


def stack(image, label, alphabet):
    return (image, label), label[-1]

def filter_func(image, label, alphabet):
    # get just images from alphabet in array, not just 2
    arr = np.array(2,3,4,5)
    result = tf.reshape(tf.equal(alphabet, 2 ), [])
    return result

# correct size
dataset = dataset.map(resize)
# now filter the dataset for the batch
dataset = dataset.filter(filter_func)
# infinite stream of batches (classes*samples + 1)
dataset = dataset.repeat().shuffle(1024).batch(51)
# stack the images together
dataset = dataset.map(stack)
dataset = dataset.shuffle(buffer_size=1000)
dataset = dataset.batch(32)

for i, (image, label) in enumerate(tfds.as_numpy(dataset)):
    print(i, image[0].shape)

Now I want to filter the images in the dataset by using the filter function. tf.equal just let me filter by one class, I want something like tensor in array.

Do you see a way doing this with the filter function? Or is this the wrong way and there is a much simpler way?

I want to create a batch of 51 images and according labels, which are from the same N=10 classes. From every class, I need K=5 different images and an additional one (which I need to classify). Every batch of N*K+1 (51) images should be from 10 new random classes.

Thank you very much in advance.

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  • Also: this filtering must be applied for every new batch (of size 51) randomly :-/ <-- clarify this. What does it mean to apply filtering randomly?
    – Vlad
    Commented Apr 17, 2019 at 17:12
  • 1
    I want to create a batch of 51 images and according labels, which are from the same 10 classes. Every batch of 51 images should be from 10 new random classes.
    – janbolle
    Commented Apr 17, 2019 at 23:05
  • It is even worse: I need K (5) images per class, from N (10) random classes, and one additional image -> batch size of N*K+1 (51) images
    – janbolle
    Commented Apr 18, 2019 at 8:01
  • Just went through tf.Dataset documentation. In my opinion, it is impossible to do with current tf.Dataset API. But you can convert it to numpy, prepare this dataset in Python/numpy and then create new dataset. And you should take the 51th sample for classification from test data. It shouldn't be part of the train data batch.
    – Vlad
    Commented Apr 18, 2019 at 10:27
  • Okay, too bad. Thank you very much for your time. Does the 51st sample need to be from test data?!
    – janbolle
    Commented Apr 18, 2019 at 12:07

1 Answer 1

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To KEEP only specific labels use this predicate:

dataset = datasets['train']

def predicate(x, allowed_labels=tf.constant([0, 1, 2])):
    label = x['label']
    isallowed = tf.equal(allowed_labels, tf.cast(label, allowed_labels.dtype))
    reduced = tf.reduce_sum(tf.cast(isallowed, tf.float32))
    return tf.greater(reduced, tf.constant(0.))

dataset = dataset.filter(predicate).batch(20)

for i, x in enumerate(tfds.as_numpy(dataset)):
    print(x['label'])
# [1 0 0 1 2 1 1 2 1 0 0 1 2 0 1 0 2 2 0 1]
# [1 0 2 2 0 2 1 2 1 2 2 2 0 2 0 2 1 2 1 1]
# [2 1 2 1 0 1 1 0 1 2 2 0 2 0 1 0 0 0 0 0]

allowed_labels specifies labels you want to keep. All labels that are not in this tensor will be filtered out.

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  • is it possible to change the values of tf.constant with each generation of one batch? so that I could feed 10 random classes for each generated batch
    – janbolle
    Commented Apr 17, 2019 at 23:23
  • Yes, sure. I’ll update my answer tomorrow, it’s past midnight at my place.
    – Vlad
    Commented Apr 17, 2019 at 23:24
  • Here too, just needed to have a look on your answer :-) Thank you very much for your time and effort!
    – janbolle
    Commented Apr 17, 2019 at 23:28
  • Please have a look at the last comment above and the altered text.
    – janbolle
    Commented Apr 18, 2019 at 8:05
  • Hi @Vlad and janbolle, I want exactly the same feature like "change the values of tf.constant with each generation of one batch?". Did you find any solution for that? It is very appreciated if you can update the answer. Thank you very much.
    – F Bai
    Commented Dec 2, 2019 at 23:35

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